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引用次数: 1

摘要

分布式约束优化问题(DCOP)作为解决多智能体环境下分布问题的一种方法受到了广泛的关注。针对分布式不确定性近似算法求解分布式约束优化问题的效率提高,提出了一种多路复用方法。针对分布式约束优化问题,提出了一种以提高分布式不确定性近似算法效率为目标的复用方法。由于大部分计算时间用于传输消息,假设每个节点的计算时间或消息长度的微小变化没有直接影响,那么使用分布式近似算法的多路计算来提高效率可能是可行的。虽然通常不可能保证近似算法可以获得最优解,但作者设法做到了,使用理论上确定的复用方法。此外,通过实验证明了分布式随机搜索算法的最优解获得率为0.99的可行性。
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An Approximate Algorithm for DCOP with Optimal Solution Attainment Rate of 0.99
Distributed constraint optimization problems (DCOP) have attracted attention as a means of resolving distribution problems in multiagent environments. The authors has proposed a multiplex method targeting the improved efficiency of a distributed nondeterministic approximate algorithm for distributed constraint optimization problems. The multiplex method targeting the improved efficiency of a distributed nondeterministic approximate algorithm have been proposed for distributed constraint optimization problems. Since much of the computation time is used to transmit messages, improving efficiency using a multiplex computation of distributed approximate algorithms might be feasible, presuming that the computation time of each node or a small change in message length has no direct impact. Although it is usually impossible to guarantee that the approximation algorithm can obtain the optimal solution, the authors managed to do so, using a theoretically determined multiplex method. In addition, the authors shows the feasibility of an optimal solution attainment rate of 0.99 by an experiment using a Distributed Stochastic Search Algorithm.
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